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Open AccessJournal ArticleDOI

Reliability-based design optimization using kriging surrogates and subset simulation

TLDR
The aim of the present paper is to develop a strategy for solving reliability-based design optimization (RBDO) problems that remains applicable when the performance models are expensive to evaluate.
Abstract
The aim of the present paper is to develop a strategy for solving reliability-based design optimization (RBDO) problems that remains applicable when the performance models are expensive to evaluate. Starting with the premise that simulation-based approaches are not affordable for such problems, and that the most-probable-failure-point-based approaches do not permit to quantify the error on the estimation of the failure probability, an approach based on both metamodels and advanced simulation techniques is explored. The kriging metamodeling technique is chosen in order to surrogate the performance functions because it allows one to genuinely quantify the surrogate error. The surrogate error onto the limit-state surfaces is propagated to the failure probabilities estimates in order to provide an empirical error measure. This error is then sequentially reduced by means of a population-based adaptive refinement technique until the kriging surrogates are accurate enough for reliability analysis. This original refinement strategy makes it possible to add several observations in the design of experiments at the same time. Reliability and reliability sensitivity analyses are performed by means of the subset simulation technique for the sake of numerical efficiency. The adaptive surrogate-based strategy for reliability estimation is finally involved into a classical gradient-based optimization algorithm in order to solve the RBDO problem. The kriging surrogates are built in a so-called augmented reliability space thus making them reusable from one nested RBDO iteration to the other. The strategy is compared to other approaches available in the literature on three academic examples in the field of structural mechanics.

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Citations
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Journal ArticleDOI

An innovative reliability-based design optimization method by combination of dual-stage adaptive kriging and genetic algorithm

TL;DR: In this article , a genetic algorithm (GA) is employed to search the global optimal solution of design parameters satisfying the reliability and deterministic constraints for solving reliability-based design optimization (RBDO) problems.
Journal ArticleDOI

Wind-Resistant Capacity Modeling for Electric Transmission Line Towers Using Kriging Surrogates and Its Application to Structural Fragility

Yunzhu Cai, +1 more
- 21 May 2021 - 
TL;DR: In this article, an adaptive kriging surrogate model is constructed to approximate the function/surface with structural uncertainties considered, and a numerical example demonstrating the feasibility of the surrogate modeling for the limit capacity of the transmission tower under winds is presented.
Book ChapterDOI

Fat Latin Hypercube Sampling and Efficient Sparse Polynomial Chaos Expansion for Uncertainty Propagation on Finite Precision Models: Application to 2D Deep Drawing Process

TL;DR: This paper defines the definition of adapted Design of Experiment (DoE) taking into account the model sensitivity with respect to infinitesimal numerical perturbations, and proposes a hybrid LARS+Q-norm approach to build an acceptable Polynomial Chaos Expansion with such sparse data.
Journal ArticleDOI

Multi-objective robust optimization using adaptive surrogate models for problems with mixed continuous-categorical parameters

TL;DR: In this article , a surrogate-assisted approach using Kriging as an inexpensive approximation of the associated computational model is proposed to estimate the quantiles of the objective functions which allows for the combination of both optimality and robustness in a single metric.
Journal ArticleDOI

Efficient structural reliability analysis via a weak-intrusive stochastic finite element method

TL;DR: In this article , a weak-intrusive stochastic finite element method (SFEM) is used to calculate structural displacements of all spatial positions, which can be used to solve the deterministic displacements and the corresponding random variables.
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